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Genetic Algorithms: a stochastic approach for improving the current cadastre accuracies

机译:遗传算法:一种用于提高当前地籍精度的随机方法

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摘要

The necessity for an analytical cadastre is impelled by the reality of the modern world. Over the past few decades or so, the issue of land management, including cadastral databases and information systems, has become increasingly acute. Even though, many countries still continue to rely upon a graphical, not homogeneous and inaccurate cadastre. This situation is far from ideal and is unsuitable for an efficient handling of land properties and real estate management. Much research has been done to improve the existing system; however, most currently employed techniques to achieve a digital cadastre, which are based on integrating old and new measurements, are mainly analytical, straightforward and aimed at resolving a specific situation rather than finding a comprehensive solution for reinstating the cadastral boundaries. A new unconventional approach that employs biological optimisation to attain unique, uniform and accurate coordinates under customary cadastral requirements - Genetic Algorithms (GAs) - is presented. This is a stochastic approach, originating in evolutionary algorithms, which is widely and successfully used in many other fields and disciplines. By mimicking biological processes, GAs offer an optimum solution obtained from a diverse range of possible initial solutions to a problem, by evaluating and evolving throughout a number of generations (iterations). The implementation of GAs principles in cadastral domain yielded good and promising results in a series of simulations performed on synthetic and real data. Based on these examinations it can be conclusively inferred that the GAs solution is more accurate than the conventional method - the coordinates are closer to their 'true' value than those obtained from the common Least Squares technique.
机译:现代世界的现实推动了地籍分析的必要性。在过去几十年左右的时间里,包括地籍数据库和信息系统在内的土地管理问题变得越来越尖锐。即使许多国家仍然继续依赖图形化的,并非同质的和不准确的地籍。这种情况远非理想,不适合有效处理土地财产和房地产管理。为了改善现有系统,已经进行了大量研究。然而,目前大多数采用的技术都是基于对新旧测量的集成,以实现数字地籍,这些技术主要是分析,直接且旨在解决特定情况,而不是寻找用于恢复地籍边界的全面解决方案。提出了一种新的非常规方法,该方法采用生物学优化以在常规地籍要求下获得唯一,统一和准确的坐标-遗传算法(GA)。这是一种随机方法,起源于进化算法,已在许多其他领域和学科中广泛成功地使用。通过模拟生物过程,GA通过评估和发展了许多代(迭代),提供了从各种可能的问题初始解决方案中获得的最佳解决方案。在地籍域中实施GA原理的一系列合成和真实数据模拟产生了良好而有希望的结果。根据这些检查,可以得出结论,GA算法比常规方法更准确-坐标比从最小二乘技术获得的坐标更接近其“真实”值。

著录项

  • 来源
    《Survey Review》 |2012年第325期|p.102-110|共9页
  • 作者单位

    Mapping and Geo-lnformation Engineering, Technion-lsrael Institute of Technology, Haifa, Israel;

    Mapping and Geo-lnformation Engineering, Technion-lsrael Institute of Technology, Haifa, Israel;

    Mapping and Geo-lnformation Engineering, Technion-lsrael Institute of Technology, Haifa, Israel;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    analytical cadastre; genetic algorithms; biological optimisation;

    机译:分析地籍遗传算法;生物优化;

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